Accurate extrinsic calibration of LiDAR, RADAR, and camera sensors is essential for reliable perception in autonomous vehicles. Still, it remains challenging due to factors such as mechanical vibrations and cumulative sensor drift in dynamic environments. This paper presents RLCNet, a novel end-to-end trainable deep learning framework for the simultaneous online calibration of these multimodal sensors. Validated on real-world datasets, RLCNet is designed for practical deployment and demonstrates robust performance under diverse conditions. To support real-time operation, an online calibration framework is introduced that incorporates a weighted moving average and outlier rejection, enabling dynamic adjustment of calibration parameters with reduced prediction noise and improved resilience to drift. An ablation study highlights the significance of architectural choices, while comparisons with existing methods demonstrate the superior accuracy and robustness of the proposed approach.
翻译:激光雷达、雷达和摄像头传感器的精确外参标定对于自动驾驶车辆的可靠感知至关重要。然而,由于动态环境中的机械振动和累积传感器漂移等因素,这仍然是一个挑战。本文提出了RLCNet,一种新颖的端到端可训练深度学习框架,用于这些多模态传感器的同时在线标定。通过在真实世界数据集上的验证,RLCNet专为实际部署设计,并在多样条件下展现出鲁棒性能。为支持实时操作,引入了一种在线标定框架,该框架结合了加权移动平均和异常值剔除,能够动态调整标定参数,减少预测噪声并增强对漂移的抵抗力。消融研究强调了架构选择的重要性,而与现有方法的比较则证明了所提方法在精度和鲁棒性方面的优越性。